The long-term goal of this Project is to identify the genetic variation contributing to the risk of developing Alopecia Areata (AA). AA is one of the most common human autoimmune diseases, with a lifetime risk of approximately 2%. It affects approximately 4.6 million individuals in the United States alone, including males and females of all ages and ethnic groups. AA fits the paradigm of a complex or multifactorial trait, in which combinations of genetic and environmental factors combine to give rise to the final phenotype. Our lab has focused on using unbiased genome-wide approaches to identify susceptibility loci for AA. We recently pioneered the use of genome-wide family-based linkage as applied to AA for the first time, and identified four susceptibility loci in a small cohort of large, multiplex pedigrees. This study was designed to identify rare alleles with relatively large effects. In this Project, we now seek to do the converse. Here, we propose to carry out a genome-wide association study (GWAS) to identify common alleles with small effect that contribute to risk of AA, using 1000 cases and 3000 controls. All of these cases and a proportion of the controls were collected from the Alopecia Areata Registry and will be genotyped with the Illumina 550K SNP array. We will utilize a strategy that has proved successful with other GWAS and obtain the majority of our control samples from a database of shared controls. We will perform replication studies in an additional 3 independent samples of cases and controls. Each of these four studies will be analyzed independently and jointly, greatly increasing our power to detect association of disease alleles with moderate genetic effects. Once susceptibility alleles for AA have been identified, candidate genes containing the SNPs of interest will be prioritized using mRNA and protein expression patterns in the hair follicle. The positional information will be cross-referenced with information derived from expression studies in mouse models for AA. Finally, should some of the variants identified be coding-sequence SNPs, we will then analyze these candidate genes in depth, to look at mRNA and protein expression, and to formulate mechanistic links to the human disease. We expect that identification of SNPs that confer susceptibility to AA will uncover the network of pathways of disease pathogenesis and lead to new approaches for treating this disorder. ? ?

Public Health Relevance

. The long-term goal of this Application is to identify the genetic variation contributing to the risk of developing Alopecia Areata (AA). AA is a form of hair loss in which the body attacks the growing hair follicle, and can result in hair loss ranging from patches on the scalp to complete hair loss over the body. AA is one of the most common human autoimmune diseases, with a lifetime risk of approximately 2%. AA affects approximately 4.6 million individuals in the United States alone, including males and females of all ages and ethnic groups. While AA is a non-lethal skin disease, its impact as measured in the Burden of Skin Disease Report is profound as it relates to quality-of-life measures. Ultimately, it is anticipated that discovery and modulation of the genes for AA will provide novel therapeutic targets, and eventually eliminate this psychologically devastating dermatologic disorder. The studies outlined in this Application aim to systematically pinpoint common susceptibility alleles for human AA for the first time. ? ? ?

Agency
National Institute of Health (NIH)
Institute
National Institute of Arthritis and Musculoskeletal and Skin Diseases (NIAMS)
Type
Research Project (R01)
Project #
1R01AR056016-01A1
Application #
7590170
Study Section
Arthritis, Connective Tissue and Skin Study Section (ACTS)
Program Officer
Baker, Carl
Project Start
2008-09-19
Project End
2013-08-31
Budget Start
2008-09-19
Budget End
2009-08-31
Support Year
1
Fiscal Year
2008
Total Cost
$688,184
Indirect Cost
Name
Columbia University (N.Y.)
Department
Dermatology
Type
Schools of Medicine
DUNS #
621889815
City
New York
State
NY
Country
United States
Zip Code
10032
de Jong, Annemieke; Jabbari, Ali; Dai, Zhenpeng et al. (2018) High-throughput T cell receptor sequencing identifies clonally expanded CD8+ T cell populations in alopecia areata. JCI Insight 3:
Pratt, C Herbert; King Jr, Lloyd E; Messenger, Andrew G et al. (2017) Alopecia areata. Nat Rev Dis Primers 3:17011
Petukhova, Lynn; Christiano, Angela M (2016) Functional Interpretation of Genome-Wide Association Study Evidence in Alopecia Areata. J Invest Dermatol 136:314-317
Chen, James C; Cerise, Jane E; Jabbari, Ali et al. (2015) Master regulators of infiltrate recruitment in autoimmune disease identified through network-based molecular deconvolution. Cell Syst 1:326-337
Petukhova, Lynn; Christiano, Angela M (2015) Functional Interpretation of Genome-Wide Association Study Evidence in Alopecia Areata. J Invest Dermatol :
Jabbari, Ali; Dai, Zhenpeng; Xing, Luzhou et al. (2015) Reversal of Alopecia Areata Following Treatment With the JAK1/2 Inhibitor Baricitinib. EBioMedicine 2:351-5
Harel, Sivan; Higgins, Claire A; Cerise, Jane E et al. (2015) Pharmacologic inhibition of JAK-STAT signaling promotes hair growth. Sci Adv 1:e1500973
Betz, Regina C; Petukhova, Lynn; Ripke, Stephan et al. (2015) Genome-wide meta-analysis in alopecia areata resolves HLA associations and reveals two new susceptibility loci. Nat Commun 6:5966
Xing, Luzhou; Dai, Zhenpeng; Jabbari, Ali et al. (2014) Alopecia areata is driven by cytotoxic T lymphocytes and is reversed by JAK inhibition. Nat Med 20:1043-9
Jabbari, Ali; Petukhova, Lynn; Cabral, Rita M et al. (2013) Genetic basis of alopecia areata: a roadmap for translational research. Dermatol Clin 31:109-17

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